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Saliency detection using Multi-layer graph ranking and combined neural networks

机译:使用多层图排序和组合神经网络进行显着性检测

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In this paper, a new algorithm based on a combined neural network is proposed to improve salient object detection in the complex images. It consists of two main steps. The first step, an objective function which is optimized on a multi-layer graph structure is constructed to diffuse saliency from borders to salient objects, aiming to roughly estimate the location and extent salient objects of an image, meanwhile, color attribute is adopted to rapidly find a set of object-related regions in the image. The second step, establish a combined neural network with Region Net and Local-Global Net. Region Net is adopted to efficiently generate the salient map with the sharp object boundary. Then Local-Global Net based on multi-scale spatial context is proposed to provide strongly reliable multi-scale contextual information, and thus achieves an optimized performance. Experimental results and comparison analysis demonstrate that the proposed algorithm is more effective and superior than most low-level oriented prior methods in terms of precision recall curves, F-measure and mean absolute errors. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文提出了一种基于组合神经网络的新算法,以改进复杂图像中的显着目标检测。它包括两个主要步骤。第一步,构建在多层图结构上优化的目标函数,以将显着性从边界扩散到显着对象,旨在粗略估计图像的显着对象的位置和范围,同时,采用颜色属性快速在图像中找到一组与对象相关的区域。第二步,使用区域网和局部全局网建立组合的神经网络。采用区域网有效地生成了具有清晰目标边界的显着图。然后提出了基于多尺度空间上下文的局部全球网络,以提供高度可靠的多尺度上下文信息,从而实现了优化的性能。实验结果和比较分析表明,该算法在精确召回曲线,F度量和平均绝对误差方面比大多数面向低水平的现有方法更为有效和优越。 (C)2019 Elsevier Inc.保留所有权利。

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